2022
DOI: 10.18517/ijaseit.12.3.15366
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Modeling Orbital Propagation Using Regression Technique and Artificial Neural Network

Abstract: Orbital propagation models are used to predict the position and velocity of natural and artificial objects orbiting the Earth. It is crucial to get accurate predictions to ensure proper satellite operational planning and early detection of possible disasters. It became critical as the number of space objects grew due to many countries scrambling to explore space for various purposes such as communications, remote sensing, scientific mission, and many more. Physical-based and mathematical expression approaches … Show more

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Cited by 5 publications
(3 citation statements)
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“…1 Historical perspective of AI & ML penetration in the energy domain [124] The application of artificial intelligence and machine learning algorithms has the potential to improve resource allocation in renewable energy projects. This can be accomplished by identifying the most suitable locations for new installations, selecting the renewable energy technologies that are most suitable for particular sites, and streamlining the distribution of resources such as land, materials, and labor [125], [126]. The optimization of project development procedures and the enhancement of the overall efficacy of investments in renewable energy are both positively impacted in this way.…”
Section: Photovoltaic Thermal Systemmentioning
confidence: 99%
“…1 Historical perspective of AI & ML penetration in the energy domain [124] The application of artificial intelligence and machine learning algorithms has the potential to improve resource allocation in renewable energy projects. This can be accomplished by identifying the most suitable locations for new installations, selecting the renewable energy technologies that are most suitable for particular sites, and streamlining the distribution of resources such as land, materials, and labor [125], [126]. The optimization of project development procedures and the enhancement of the overall efficacy of investments in renewable energy are both positively impacted in this way.…”
Section: Photovoltaic Thermal Systemmentioning
confidence: 99%
“…Machine learning can transform sustainable practices in marine transport through data-driven decisionmaking, resource allocation optimization, and operational efficiency enhancement in the maritime sector [81]- [83]. With the rapid advancement of technology, incorporating machine learning into maritime operations is essential for creating a more sustainable and resilient marine transportation system [84], [85].…”
Section: Introductionmentioning
confidence: 99%
“…Several principal approaches underpin soft computing, like genetic algorithms (GA), ANN, fuzzy logic, support vector machines (SVM), and evolutionary algorithms. These techniques reflect human cognitive strategies and use historical data to make educated judgments [95]- [98]. For example, artificial neural networks are stimulated by the human brain's shape and features, which include linked nodes (neurons) that procedure and examine information.…”
Section: Introductionmentioning
confidence: 99%